The Human Blood Transcriptome in a Large Population Cohort and Its Relation to Aging and Health.

Abstract:

Background: The blood transcriptome is expected to provide a detailed picture of an organism's physiological state with potential outcomes for applications in medical diagnostics and molecular and epidemiological research. We here present the analysis of blood specimens of 3,388 adult individuals, together with phenotype characteristics such as disease history, medication status, lifestyle factors, and body mass index (BMI). The size and heterogeneity of this data challenges analytics in terms of dimension reduction, knowledge mining, feature extraction, and data integration.

Methods: Self-organizing maps (SOM)-machine learning was applied to study transcriptional states on a population-wide scale. This method permits a detailed description and visualization of the molecular heterogeneity of transcriptomes and of their association with different phenotypic features.

Results: The diversity of transcriptomes is described by personalized SOM-portraits, which specify the samples in terms of modules of co-expressed genes of different functional context. We identified two major blood transcriptome types where type 1 was found more in men, the elderly, and overweight people and it upregulated genes associated with inflammation and increased heme metabolism, while type 2 was predominantly found in women, younger, and normal weight participants and it was associated with activated immune responses, transcriptional, ribosomal, mitochondrial, and telomere-maintenance cell-functions. We find a striking overlap of signatures shared by multiple diseases, aging, and obesity driven by an underlying common pattern, which was associated with the immune response and the increase of inflammatory processes.

Conclusions: Machine learning applications for large and heterogeneous omics data provide a holistic view on the diversity of the human blood transcriptome. It provides a tool for comparative analyses of transcriptional signatures and of associated phenotypes in population studies and medical applications.

Keywords: age; gene expression; immune response; lifestyle and obesity; omics and phenotype integration; self-organizing maps; subtypes.

Copyright © 2020 Schmidt, Hopp, Arakelyan, Kirsten, Engel, Wirkner, Krohn, Burkhardt, Thiery, Loeffler, Loeffler-Wirth and Binder.

SEEK ID: https://armlifebank.am/publications/116

PubMed ID: 33693414

DOI: 10.3389/fdata.2020.548873

Projects: Multi-Omics Molecular Diversity of Cancers

Publication type: Journal

Journal: Frontiers in big data

Citation: Frontiers in big data,3:548873

Date Published: 30th Oct 2020

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Registered Mode: manually

Authors: Maria Schmidt, Lydia Hopp, Arsen Arakelyan, Holger Kirsten, Christoph Engel, Kerstin Wirkner, Knut Krohn, Ralph Burkhardt, Joachim Thiery, Markus Loeffler, Henry Loeffler-Wirth, Hans Binder

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Schmidt, M., Hopp, L., Arakelyan, A., Kirsten, H., Engel, C., Wirkner, K., Krohn, K., Burkhardt, R., Thiery, J., Loeffler, M., Loeffler-Wirth, H., & Binder, H. (2020). The Human Blood Transcriptome in a Large Population Cohort and Its Relation to Aging and Health. In Frontiers in Big Data (Vol. 3). Frontiers Media SA. https://doi.org/10.3389/fdata.2020.548873
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Created: 10th Sep 2025 at 09:20

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